Data & Analytics

Big Data in e-Commerce

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How to use the power of data in e-Commerce? Applying the Big Data solutions makes it possible to analyse data in real time. This allows us to use the data not for reports only, but to translate them into action.
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  • 1. Big Data in e-Commerce. How to Use the Power of Data in E-Commerce? Tom Karwatka
  • 2. Monitoring E-Commerce Today • NC (new customer); • RC (retained customer); • ROI (return on investment); • CLV (customer lifetime value); • ROI CLV; • RR (return rate); • CR (conversion rate); • CPO (cost per order); • CPNC (cost per new customer); • CPRC (cost per retained customer); Today, the majority of the e-commerce world monitors the following indexes:
  • 3. Sources of Data in E-Commerce • E-commerce Orders Products Baskets Visits Users Marketing campaigns Referring links Keywords Catalogues browsing • Social data FB Twitter Google • Cookies / reMarketing / MA • Google Analytics • … and many others
  • 4. The Choice of Data Source in Traditional Retail Is Even Greater Source: http://www.slideshare.net/MarketResearchReports/big-data-1 Already in 2012 the Walmart transaction database was estimated to have 2.5 petabyte of customer data.
  • 5. Questions the Analytics Can Answer • What are the best sellers in a category? • Is the most watched product at the same time the best selling one? • Which products sell best among the users who have already bought an item in the product category? • How often does a given user group (eg., new users) return to your shop? • … The problem is, however, that answering these questions does not lead directly to a bigger profit. Companies often get discouraged as the answers are difficult to apply in real life.
  • 6. The Actionable Data • Collaborative filtering • Using the information on users' actions to automatically find the correlations between: Elements on a website A keyword and the link chosen • Recommendations Products Offers • Classification Users who continue shopping Applying the Big Data solutions makes it possible to analyse data in real time. This allows us to use the data not for reports only, but to translate them into action – usually personalized and in real time. • Regression Indicating trends or the lack of trends Predicting stocks Anticipating a product's future popularity Anticipating the future popularity of promotions Assessing the effect of marketing activities on sales or the number of users • Categorization and segmentation Customers Products
  • 7. Example: Actionable Data If, thanks to Big Data, we can find the correlation between the social media and our system data, then taking into account that: 40% users purchased a product after liking or sharing it on social media 71% users of social media buy mainly based on recommendations We can prepare shopping recommendations for specific customers, based on their social media behavior.
  • 8. Example: T-Mobile Source: http://www.slideshare.net/Dell/big-data-use-cases-36019892?related=1 • Billings, social media data • Selecting clients for migration to premium models • Detecting clients with high Lifetime Customer Value
  • 9. Example: CREDEM Banca • Predicting what products and services will a customer like • Increasing an average revenue on a customer by 22% • Marketing costs reducted by 9% Source: http://www.slideshare.net/Dell/big-data-use-cases-36019892?related=1
  • 10. Example: STARBUCKS • Collecting the data about the customers' orders • Personalizing adverts • Personalizing vouchers • Selecting the customers losing their interest in the offer • Recovering lost customers Source: http://www.slideshare.net/Dell/big-data-use-cases-36019892?related=1
  • 11. Example: NORDSTROM • Aggregating data from www pages, social media, transactions, loyalty program. • Choosing a message based on the customer's preferred communication channel. Source: http://www.slideshare.net/Dell/big-data-use-cases-36019892?related=1
  • 12. Example: EasySize Analyzing orders and returns – using the findings to decide which sizes in different brands would fit a given person. Source: http://easysize.me
  • 13. Example: EasySize Results: decrease in returns by 35-40% easysize.me Source: http://easysize.me
  • 14. Example: Promotional Activity of Brands The Kizzu app is available on iPhone and Android. Over 10.000 users enjoy the app. It gives the information on current promotions in the users’ shopping malls. • Using a consumer mobile app, we collected the information on the special offers in shopping malls that customers find attractive. • The data let us answer the questions: Which brands have the highest promotional activity? Which special offers are the most effective?
  • 15. Example: Promotional Activity of Brands The free-of charge magazine for the customers of Deichmann is published twice a year - in spring and fall. It shows the latest fashion trends - very popular online • Among the most popular special offers, we found also some less popular, niche brands. Internet / Mobile gives them opportunity to compete against strong brands for the customers' attention. They attract customers, offering big discounts. • Among the most popular special offers there are frequently content based promotion activities (a promotional newsletter or a magazine). • Activities targeting the most loyal customers are also popular. • The number of promotional activities does not depend on the status of a brand. Our TOP 50 includes also some of the brands positioned as premium ones. Their customers apparently expect a frequent interaction with the brand.
  • 16. Future: Big Data & Design • Continuing to use Big Data together with the automation of the layout creation - Responsive-web design - Font-end frameworks • Creating user-customized layouts • Case study: https://www.behance.net/gallery/22 089487/Tchibo-Content-Automation- Platform Source: https://www.behance.net/gallery/22089487/Tchibo- Content-Automation-Platform
  • 17. Future: Big Data & Machine Learning http://www.ibm.com/smarterplanet/us/en/ibmwatson/developer-cloud-enterprise.html Three days in and we’re already acting like it’s been here forever. (…) Alexa can maintain two lists for you: To-do and Shopping List. Adding things is as simple as ”Add butter to shopping list” and „addng gutters to to-do list.” (…) Once you’ve added things to your list, you access them through the app. One great thing is that everyone in your household who installs the app shares everything. So when I was at the store, my wife texted me that she’d put some things on the Echo shopping list. Sure enough, I opened my app and there it was. I could check off the things I got and they disappeared. http://www.engadget.com/products/amazon/echo/reviews/14cw/ •IBM Watson - Developer Cloud Enterprise Medical diagnostics support Legal consultations •Google Google Now – the first apps for eBay DeepMind •Siri, Cortana, Amazon Echo Amazon Echo already makes it possible to create shopping lists, among others
  • 18. Future: Big Data & Machine Learning • The assistant will deduct the products we are about to need from a number of data, and will order them autonomously. • As far as the mass products go, the competition will become more and more difficult. • The promotion of FMCG as we know it will stop being recognizable by the customers. • The companies controlling e-assistants will become the biggest shopping portals. • Basic competitive advantage will grow in importance – the product's availability, competitive price, and swift logistics. • Internet will become just another layer of technology – little interesting for an average user. Source: https://itunes.apple.com/us/app/fetch-personal-buying-assistant/id867636554
  • 19. Future: Big Data & Machine Learning • Right now, it is worth to develop new mechanisms for data exchange and offer creation automation. • It is also worth to expand your own client databases, so as to keep in direct touch with your customers as long as possible. • Owned Media! Source: https://itunes.apple.com/us/app/fetch-personal-buying-assistant/id867636554
  • 20. Thank You for the Attention • Are you interested in Big Data? • Let's talk! 20 Tom Karwatka http://divante.co tkarwatka@divante.co
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